Fault Identification in Power Transformers Using Dissolve Gas Analysis and Support Vector Machine

H. Illias, Chan Kai Choon, Wee Zhao Liang, H. Mokhlis, A. M. Ariffin, Mohd Fairouz Mohd Yousof
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引用次数: 2

Abstract

Transformer faults need to be identified accurately at the early stage in order to ease the maintenance of power transformer, reduce the cost of maintenance, avoid severe damage on transformer and extend the lifespan of transformer. Dissolved Gas Analysis (DGA) is the most commonly used method to identify the transformer fault in power system. However, the existing transformer fault identification methods based on DGA have a limitation because each method is only suitable for certain conditions. Thus, in this work, one of the artificial intelligence techniques, which is Support Vector Machine (SVM), was applied to determine the power transformer fault type based on DGA data. The accuracy of the SVM was tested with different ratio of training and testing data. Comparison of the results from SVM with artificial neural network (ANN) was done to validate the performance of the system. It was found that fault identification in power transformers based on DGA data using SVM yields higher accuracy than ANN. Therefore, SVM can be recommended for the application of power transformer fault type identification in practice.
基于溶解气体分析和支持向量机的电力变压器故障识别
为了方便电力变压器的维护,降低维护成本,避免对变压器造成严重的损坏,延长变压器的使用寿命,需要在变压器故障的早期进行准确的识别。溶解气体分析(DGA)是电力系统中最常用的变压器故障识别方法。然而,现有的基于DGA的变压器故障识别方法存在一定的局限性,每种方法都只适用于特定的条件。因此,本研究将人工智能技术之一的支持向量机(SVM)应用于基于DGA数据的电力变压器故障类型判断。用不同的训练数据和测试数据比例对支持向量机的准确率进行了测试。将支持向量机与人工神经网络的结果进行了比较,验证了系统的性能。结果表明,基于DGA数据的支持向量机在电力变压器故障识别中的准确率高于人工神经网络。因此,支持向量机可推荐用于电力变压器故障类型识别的实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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